基于扇区和块分割的虹膜神经网络识别改进

F. Sibai
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引用次数: 0

摘要

高性能生物识别技术有助于可靠地识别访问授权和其他目的的人员。由于虹膜具有独特的特征,并且能够保护虹膜不受环境和老化的影响,因此虹膜识别在识别人的身份方面非常有效。我们专注于设计和训练用于高性能虹膜识别的前馈人工神经网络,并研究各种图像数据分割技术对生物识别系统识别精度的影响。提出并探索了几种虹膜图像数据分割技术。仿真结果表明,扇区和块数据分区技术可以达到100%的识别精度,改进了我们之前的工作结果b[18]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved neural network-based recognition of irises with sector and block partitioning
High performance biometrics helps in reliably identifying persons for access authorization and other purposes. Iris recognition is very effective in identifying persons due to the iris' unique features and the protection of the iris from the environment and aging. We focus on the design and training of a feed-forward artificial neural network for high-performance iris recognition and investigate the impact of various image data partitioning techniques on the recognition accuracy of the biometric system. Several iris image data partitioning techniques are proposed and explored. Simulation results reveal that 100% recognition accuracies with sector and block data partitioning techniques can be reached, improving on our prior work results [18].
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